Predicting the pathogenicity of bacterial genomes using widely spread protein families

BMC Bioinformatics. 2022 Jun 24;23(1):253. doi: 10.1186/s12859-022-04777-w.

Abstract

Background: The human body is inhabited by a diverse community of commensal non-pathogenic bacteria, many of which are essential for our health. By contrast, pathogenic bacteria have the ability to invade their hosts and cause a disease. Characterizing the differences between pathogenic and commensal non-pathogenic bacteria is important for the detection of emerging pathogens and for the development of new treatments. Previous methods for classification of bacteria as pathogenic or non-pathogenic used either raw genomic reads or protein families as features. Using protein families instead of reads provided a better interpretability of the resulting model. However, the accuracy of protein-families-based classifiers can still be improved.

Results: We developed a wide scope pathogenicity classifier (WSPC), a new protein-content-based machine-learning classification model. We trained WSPC on a newly curated dataset of 641 bacterial genomes, where each genome belongs to a different species. A comparative analysis we conducted shows that WSPC outperforms existing models on two benchmark test sets. We observed that the most discriminative protein-family features in WSPC are widely spread among bacterial species. These features correspond to proteins that are involved in the ability of bacteria to survive and replicate during an infection, rather than proteins that are directly involved in damaging or invading the host.

Keywords: Commensal bacteria; Comparative genomics; Opportunistic bacteria; Pathogenic bacteria; Protein families; Random forest.

MeSH terms

  • Bacteria / genetics
  • Genome, Bacterial*
  • Genomics* / methods
  • Humans
  • Machine Learning
  • Phylogeny
  • Virulence / genetics